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AutoCorrel II: A neural network event correlation approach

机译:AutoOcorrel II:神经网络事件相关方法

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As a follow-up to our earlier model Autocorrel I, we have implemented a two-stage event correlation approach with improved performance. Like Autocorrel I, the new model correlates intrusion detection system (IDS) alerts to automate alert and incidents management, and reduce the workload on an IDS analyst. We achieve this correlation by clustering similar alerts, thus allowing the analyst to only consider a few clusters rather than hundreds or thousands of alerts. The first stage uses an artificial neural network (ANN)-based autoassociator (AA). The AA's objective is to attempt to reproduce each alert at its output. In the process, it uses an error metric, the reconstruction error (RE), between its input and output to cluster similar alerts. In order to improve the accuracy of the system we add another machine-learning stage which takes into account the RE as well as raw attribute information from the input alerts. This stage uses the Expectation-Maximisation (EM) clustering algorithm. The performance of this approach is tested with intrusion alerts generated by a Snort IDS on DARPA's 1999 IDS evaluation data as well as incidents.org alerts.
机译:作为我们早期模型自动支持的后续行动,我们已经实现了一种具有改进性能的两级事件相关方法。与AutoOcorrel I一样,新模型将入侵检测系统(IDS)警报带来自动化警报和事件管理,并减少IDS分析师的工作负载。我们通过群集类似的警报来实现这种关联,从而允许分析师只考虑几个集群而不是数百或数千个警报。第一阶段使用人工神经网络(ANN)基础的自动化器(AA)。 AA的目标是尝试在其输出处重现每个警报。在此过程中,它使用误差度量,重建错误(RE),其输入和输出到群集类似的警报。为了提高系统的准确性,我们添加另一个机器学习阶段,该阶段考虑了来自输入警报的RE和原始属性信息。该阶段使用期望 - 最大化(EM)聚类算法。使用DARPA 1999年IDS评估数据以及invIdents.org警报的SNORT ID生成的入侵警报测试此方法的性能。

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